MemGovern:通过从受治理的人类经验中学习来增强代码智能体 / MemGovern: Enhancing Code Agents through Learning from Governed Human Experiences
1️⃣ 一句话总结
这篇论文提出了一个名为MemGovern的框架,它能够将GitHub上零散的历史编程问题解决经验整理成结构化的‘经验卡片’,帮助代码智能体更高效地检索和利用这些人类智慧,从而显著提升其自动修复软件bug的能力。
While autonomous software engineering (SWE) agents are reshaping programming paradigms, they currently suffer from a "closed-world" limitation: they attempt to fix bugs from scratch or solely using local context, ignoring the immense historical human experience available on platforms like GitHub. Accessing this open-world experience is hindered by the unstructured and fragmented nature of real-world issue-tracking data. In this paper, we introduce MemGovern, a framework designed to govern and transform raw GitHub data into actionable experiential memory for agents. MemGovern employs experience governance to convert human experience into agent-friendly experience cards and introduces an agentic experience search strategy that enables logic-driven retrieval of human expertise. By producing 135K governed experience cards, MemGovern achieves a significant performance boost, improving resolution rates on the SWE-bench Verified by 4.65%. As a plug-in approach, MemGovern provides a solution for agent-friendly memory infrastructure.
MemGovern:通过从受治理的人类经验中学习来增强代码智能体 / MemGovern: Enhancing Code Agents through Learning from Governed Human Experiences
这篇论文提出了一个名为MemGovern的框架,它能够将GitHub上零散的历史编程问题解决经验整理成结构化的‘经验卡片’,帮助代码智能体更高效地检索和利用这些人类智慧,从而显著提升其自动修复软件bug的能力。
源自 arXiv: 2601.06789